#!/usr/bin/env bash set -x export DECORD_EOF_RETRY_MAX=2048001 export WANDB_API_KEY= project_name='EasyR1-onethinker-rl' exp_name='qwen3_vl_onethinker-rl' MODEL_PATH= TRAIN_FILE="onethinker_rl_train.json" TEST_FILE="onethinker_rl_train.json" IMAGE_DIR= ROLLOUT_BS=128 GLOBAL_BS=32 MB_PER_UPDATE=1 MB_PER_EXP=1 TP_SIZE=4 N_GPUS_PER_NODE=8 NNODES=4 python3 -m verl.trainer.main \ config=EasyR1/examples/config_ema_grpo_64.yaml \ data.train_files="${TRAIN_FILE}" \ data.val_files="${TEST_FILE}" \ data.image_dir="${IMAGE_DIR}" \ data.rollout_batch_size="${ROLLOUT_BS}" \ worker.actor.global_batch_size="${GLOBAL_BS}" \ worker.actor.micro_batch_size_per_device_for_update="${MB_PER_UPDATE}" \ worker.actor.micro_batch_size_per_device_for_experience="${MB_PER_EXP}" \ worker.actor.model.model_path="${MODEL_PATH}" \ worker.actor.fsdp.torch_dtype=bf16 \ worker.actor.optim.strategy=adamw_bf16 \ worker.actor.optim.lr=2e-6 \ worker.rollout.tensor_parallel_size="${TP_SIZE}" \ algorithm.filter_low=0.01 \ algorithm.filter_high=0.99 \ algorithm.online_filtering=true \ algorithm.filter_key=accuracy \ trainer.project_name="${project_name}" \ trainer.experiment_name="${exp_name}" \ trainer.n_gpus_per_node="${N_GPUS_PER_NODE}" \ trainer.nnodes="${NNODES}" \ trainer.save_freq=100 \ trainer.save_checkpoint_path=EasyR1/checkpoints